Multistage Malware Detection Method for Backup Systems

Pavel Novák, V. Oujezský, Patrik Kaura, T. Horvath, M. Holik
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Abstract

This paper proposes an innovative solution to address the challenge of detecting latent malware in backup systems. The proposed detection system utilizes a multifaceted approach that combines similarity analysis with machine learning algorithms to improve malware detection. The results demonstrate the potential of advanced similarity search techniques, powered by the Faiss model, in strengthening malware discovery within system backups and network traffic. Implementing these techniques will lead to more resilient cybersecurity practices, protecting essential systems from hidden malware threats. This paper’s findings underscore the potential of advanced similarity search techniques to enhance malware discovery in system backups and network traffic, and the implications of implementing these techniques include more resilient cybersecurity practices and protecting essential systems from malicious threats hidden within backup archives and network data. The integration of AI methods improves the system’s efficiency and speed, making the proposed system more practical for real-world cybersecurity. This paper’s contribution is a novel and comprehensive solution designed to detect latent malware in backups, preventing the backup of compromised systems. The system comprises multiple analytical components, including a system file change detector, an agent to monitor network traffic, and a firewall, all integrated into a central decision-making unit. The current progress of the research and future steps are discussed, highlighting the contributions of this project and potential enhancements to improve cybersecurity practices.
备份系统的多级恶意软件检测方法
本文提出了一种创新的解决方案,以应对在备份系统中检测潜伏恶意软件的挑战。所提出的检测系统采用了一种多方面的方法,将相似性分析与机器学习算法相结合,以提高恶意软件的检测能力。研究结果表明,由 Faiss 模型驱动的高级相似性搜索技术在加强系统备份和网络流量中恶意软件的发现方面具有潜力。采用这些技术将提高网络安全实践的弹性,保护重要系统免受隐藏恶意软件的威胁。本文的研究结果强调了高级相似性搜索技术在加强系统备份和网络流量中恶意软件发现方面的潜力,实施这些技术的意义包括提高网络安全实践的弹性,保护重要系统免受隐藏在备份档案和网络数据中的恶意软件威胁。人工智能方法的集成提高了系统的效率和速度,使所提出的系统在现实世界的网络安全中更加实用。本文的贡献在于提出了一个新颖而全面的解决方案,旨在检测备份中潜藏的恶意软件,防止备份被入侵的系统。该系统由多个分析组件组成,包括系统文件变化检测器、网络流量监控代理和防火墙,所有组件都集成到一个中央决策单元中。报告讨论了研究的当前进展和未来步骤,强调了本项目的贡献以及改进网络安全实践的潜在改进措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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